Singular Conditional Autoregressive Wishart Model for Realized Covariance Matrices

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Gustav Alfelt, Taras Bodnar, F. Javed, J. Tyrcha
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引用次数: 1

Abstract

Abstract Realized covariance matrices are often constructed under the assumption that richness of intra-day return data is greater than the portfolio size, resulting in nonsingular matrix measures. However, when for example the portfolio size is large, assets suffer from illiquidity issues, or market microstructure noise deters sampling on very high frequencies, this relation is not guaranteed. Under these common conditions, realized covariance matrices may obtain as singular by construction. Motivated by this situation, we introduce the Singular Conditional Autoregressive Wishart (SCAW) model to capture the temporal dynamics of time series of singular realized covariance matrices, extending the rich literature on econometric Wishart time series models to the singular case. This model is furthermore developed by covariance targeting adapted to matrices and a sector wise BEKK-specification, allowing excellent scalability to large and extremely large portfolio sizes. Finally, the model is estimated to a 20-year long time series containing 50 stocks and to a 10-year long time series containing 300 stocks, and evaluated using out-of-sample forecast accuracy. It outperforms the benchmark models with high statistical significance and the parsimonious specifications perform better than the baseline SCAW model, while using considerably less parameters.
已实现协方差矩阵的奇异条件自回归Wishart模型
摘要实现协方差矩阵通常是在假设日内收益数据的丰富度大于投资组合规模的情况下构建的,从而产生非奇异矩阵度量。然而,例如,当投资组合规模较大,资产存在流动性问题,或者市场微观结构噪音阻碍了高频采样时,这种关系是不可保证的。在这些常见条件下,实现的协方差矩阵可以通过构造获得奇异性。基于这种情况,我们引入了奇异条件自回归Wishart(SCAW)模型来捕捉奇异实现协方差矩阵的时间序列的时间动力学,将计量经济学Wishart时间序列模型的丰富文献扩展到奇异情况。该模型通过适用于矩阵的协方差目标和扇区BEKK规范进一步开发,允许对大型和超大投资组合规模进行出色的可扩展性。最后,将该模型估计为包含50只股票的20年长时间序列和包含300只股票的10年长时间系列,并使用样本外预测精度进行评估。它优于具有高统计显著性的基准模型,并且简约规范的性能优于基线SCAW模型,同时使用的参数要少得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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